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J Health Info Stat > Volume 50(1); 2025 > Article
J Health Info Stat 2025;50(1):31-38.
Published online: February 28, 2025.
DOI: https://doi.org/10.21032/jhis.2025.50.1.31

폐렴 환자 분류를 위한 연합학습과 공정한 연합학습 비교
나경민1 , 김도형2 , 이영호3
1가천대학교 컴퓨터공학과 학부생
2가천대학교 IT융합대학 석사과정생
3가천대학교 컴퓨터공학과 교수
Comparison of Federated Learning and Fair Federated Learning for Pneumonia Patient Classification
Kyungmin Na1 , Dohyoung Kim2 , Youngho Lee3
1Undergraduate Student, Department of Computer Engineering, Gachon University, Seongnam, Korea
2Graduate Student, Department of IT Convergence Engineering, Gachon University, Seongnam, Korea
3Professor, Department of Computer Engineering, Gachon University, Seongnam, Korea
Corresponding author:  Youngho Lee,Tel: +82-31-750-5011, Email: lyh@gachon.ac.kr
Received: October 28, 2024;  Accepted: November 19, 2024.
ABSTRACT
Objectives:
This study aims to compare the performance of federated learning (FL) and fair federated learning (FFL) in classifying pneumonia patients based on chest X-ray data. The primary focus is on assessing the accuracy and fairness of these models in handling imbalanced and distributed data in real-world healthcare settings.
Methods:
We used a large chest X-ray dataset to evaluate the performance of FL and FFL models. The models were built using the ResNet50 architecture, and experiments were conducted under both independent and identically distributed (IID) and non-IID data conditions. The FFL approach applied optimized loss functions to address data imbalance and ensure fair contribution from each client, regardless of the local data distribution.
Results:
Our findings indicate that FFL consistently outperforms traditional FL models, particularly in non-IID environments. The FFL model demonstrated higher accuracy in pneumonia classification, achieving a significant improvement in model fairness and performance across different client datasets. The use of the ResNet50 architecture further enhanced the model’s ability to handle complex X-ray image patterns.
Conclusions:
FFL offers a superior solution for handling imbalanced medical data compared to conventional FL models. Its ability to maintain fairness while improving classification accuracy makes it an ideal approach for decentralized healthcare systems, ensuring better patient outcomes while preserving data privacy.
Key words: Pneumonia, Classification, Federated learning, Fari federated learning, Chest X-ray
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